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Cross-domain speaker recognition using domain adversarial siamese network with a domain discriminator

机译:跨域扬声器识别使用域对抗暹罗网络具有域鉴别器

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摘要

With the widespread use of automatic speaker recognition in realistic world, it suffers a lot when there is a domain mismatch, including channel, language, distance etc. Recent research studies have introduced the adversarial-learning mechanism into deep neural networks to reduce the distribution mismatch between different domains. However, they only aligned the domain distributions between the background training and evaluation data. Few focused on the diverse distribution underlying the enrol and test data. In this Letter, the authors propose a domain adversarial siamese (DAS) network trying to eliminate the domain influence on speech representation. Specifically, they feed a network with speech pairs from the same speaker. Then a domain discriminator is introduced to capture the domain consistence or difference between pairs. Final embeddings become domain-invariant and more speaker-discriminative. A cross-channel data set is sort out from NIST speaker recognition evaluation and more experiments are conducted on AISHELL-Wake-Up-1 data set. Results show that DAS performs equally effective with typical domain adversarial methods, improving results at least 10% on energy efficiency rating. Furthermore, it is proved to be more valid for scenarios such as unbalanced data amount and unknown domain, achieving relatively 11% improvements.
机译:随着在现实世界中的自动扬声器识别的广泛使用时,当域名错配,包括渠道,语言,距离等时,它遭受了很多。最近的研究研究已经将普发的学习机制引入深度神经网络中以减少分配不匹配在不同的域之间。但是,它们仅在后台培训和评估数据之间对齐域分布。很少集中在注册和测试数据的不同分布上。在这封信中,作者提出了一个域反对派暹罗(DAS)网络试图消除对语音表示的域的影响。具体而言,它们使用来自同一扬声器的语音对提供网络。然后引入域鉴别器以捕获对之间的域一致性或差异。最终嵌入式成为域名和更多的发言者歧视。从NIST扬声器识别评估中分类跨通道数据集,并且在Aishell-Wake-Up-1数据集上进行更多实验。结果表明,DAS对典型的域对抗方法进行同样有效,提高了能效等级的结果至少10%。此外,证明对诸如不平衡数据量和未知域等方案的方案更有效,实现了相对11%的改进。

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